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New algorithms for singly linearly constrained quadratic programs subject to lower and upper bounds

机译:受上下限限制的单线性约束二次程序的新算法

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摘要

There are many applications related to singly linearly constrained quadratic programs subjected to upper and lower bounds. In this paper, a new algorithm based on secant approximation is provided for the case in which the Hessian matrix is diagonal and positive definite. To deal with the general case where the Hessian is not diagonal, a new efficient projected gradient algorithm is proposed. The basic features of the projected gradient algorithm are: 1) a new formula is used for the stepsize; 2) a recently-established adaptive non-monotone line search is incorporated; and 3) the optimal stepsize is determined by quadratic interpolation if the non-monotone line search criterion fails to be satisfied. Numerical experiments on large-scale random test problems and some medium-scale quadratic programs arising in the training of Support Vector Machines demonstrate the usefulness of these algorithms.
机译:有许多应用涉及受上限和下限限制的单线性约束二次程序。针对Hessian矩阵为对角正定的情况,提出了一种基于割线近似的新算法。针对Hessian不是对角线的一般情况,提出了一种新的高效投影梯度算法。投影梯度算法的基本特征是:1)步长采用新公式。 2)合并了最近建立的自适应非单调线搜索; 3)如果不满足非单调线搜索准则,则通过二次插值确定最优步长。在支持向量机训练中出现的大规模随机测试问题和一些中等规模二次程序的数值实验证明了这些算法的有效性。

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